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A Data-Driven Statistical Approach for Monitoring and Analysis of Large Industrial Processes

机译:大型工业过程的监测和分析的数据驱动统计方法

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Monitoring and fault detection of industrial processes is an important area of research in data science, helping effective management of the plant by the remote operator. In this article, a data-driven statistical model of a process is estimated using the principal component analysis (PCA) method and the associated probability density function. The aim is to use the model to monitor and detect the incurred faults in the industrial plant. The experimental data are collected by finding the suitable subsystems of a Recycle Gas in Ethylene Oxide production process, and a subset of nine variables are extracted for further statistical analysis of the system. The performance of the developed model for monitoring purpose is evaluated by using faulty and close to faulty inputs as the new test data.
机译:工业过程的监视和故障检测是数据科学领域的重要研究领域,有助于远程操作员对工厂进行有效管理。在本文中,使用主成分分析(PCA)方法和相关的概率密度函数来估计流程的数据驱动统计模型。目的是使用该模型来监视和检测工厂中发生的故障。通过在环氧乙烷生产过程中找到合适的再循环气体子系统来收集实验数据,并提取9个变量的子集用于系统的进一步统计分析。通过使用错误的和接近错误的输入作为新的测试数据来评估用于监视目的的已开发模型的性能。

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